System, Apparatus and Methods for Providing an Intent Suggestion to a User in a Text-Based Conversational Experience with User Feedback

ABSTRACT

Systems, apparatuses, and methods for providing a more effective customer service support system. A trained model may be created or generated by a process that includes acquiring a corpus of documents (such as customer generated messages), generating keyphrases from each document in the corpus of documents, generating word embeddings from each document in the corpus of documents, performing a clustering operation on the word embeddings, assigning each document in the corpus to a duster and labeling each duster, and training a machine learning or text classification model using the most relevant documents in a cluster and the label assigned to that cluster. The methods include a processing flow that provides multiple ways for a customer to navigate and select their desired intent or purpose in seeking customer assistance. As part of the processing flow, the trained machine learning model and intent tree data are provided to a customer seeking assistance.

CROSS REFERENCE TO RELATED APPLICATIONS

This application claims the benefit of U.S. Provisional Application No. 62/964,548, entitled “System, Apparatus and Methods for Providing an Intent Suggestion to a User in a Text-Based Conversational Experience with User Feedback,” filed Jan. 22, 2020, the disclosure of which is incorporated, in its entirety (including the Appendix), by this reference.

This application also claims the benefit of U.S. Provisional Application No. 62/964,539, entitled “User Interface and Process Flow for Providing an Intent Suggestion to a User in a Text-Based Conversational Experience with User Feedback,” filed Jan. 22, 2020, the disclosure of which is incorporated, in its entirety (including the Appendix), by this reference.

BACKGROUND

In conversation-based customer service systems, service agents and customer support personnel are typically organized in terms of the type, category or area in which they provide customers with assistance. For example, in an eCommerce context, some agents specialize in providing customer service or assistance with regards to payments/billing questions or tasks (i.e., they understand credit card processing, chargebacks, refunds, etc.) while other agents specialize in providing customer assistance with regards to fulfillment/shipping (i.e., they understand physical goods tracking, courier agencies practices and schedule, weather impacts, routing issues, etc.). Still other agents may be responsible for answering questions and assisting customers with tasks related to product information or warranties.

As a result of the segmentation of customer assistance agents, when an end-user (such as a customer or vendor) sends a message to customer service, it has to be routed to the department or group of agents best suited to answering the user's question or helping them to solve their problem. Traditionally, and in conventional systems, this has been accomplished by a manual review of a user's input and the determination by a person of the appropriate agent or group of agents to route the user's request or inquiry to. This means that someone is reading through every new incoming service request ticket and assigning it to the right department and then forwarding the ticket to that department.

However, manual performance of the evaluation and routing of service request tickets has multiple disadvantages, among which are at least the following:

-   -   It is slow because a human is the bottleneck in the process and         having multiple humans coordinate this work across a large set         of service requests is another inefficient aspect of the         process;     -   It is error-prone because it is manual and based on human         judgments. For example, there is often some amount of ambiguity         in a service request (e.g., it's not always obvious whether a         ticket should be classified as “billing” or “refund”); and     -   It is tedious and uninteresting work, causing a relatively high         churn rate among personnel in this role—this can impact         recruiting, training and retention costs and staffing         requirements.         These problems and others related to the conventional approach         provide an incentive for companies to seek ways of partially or         fully automating the evaluation and routing processes used for         customer support requests. However, in many cases routing cannot         be automated effectively with a set of rules, because as noted,         there is often no clear pattern or consistency to how a user may         phrase their request for assistance, nor is there an effective         way to remove ambiguities that arise in interpreting user         requests. For example, “I want my money back” needs to be         classified as “refund” and there are no obvious keywords to         automate such a rule (such as are used in email filtering         rules).

Embodiments of the invention are directed toward solving these and other problems associated with conventional approaches to providing a conversational based customer service support system, individually and collectively.

SUMMARY

The terms “invention,” “the invention,” “this invention,” “the present invention,” “the present disclosure,” or “the disclosure” as used herein are intended to refer broadly to all of the subject matter described in this document, the drawings or figures, and to the claims. Statements containing these terms should be understood not to limit the subject matter described herein or to limit the meaning or scope of the claims. Embodiments of the invention covered by this disclosure are defined by the claims and not by this summary. This summary is a high-level overview of various aspects of the disclosure and introduces some of the concepts that are further described in the Detailed Description section below. This summary is not intended to identify key, essential or required features of the claimed subject matter, nor is it intended to be used in isolation to determine the scope of the claimed subject matter. The subject matter should be understood by reference to appropriate portions of the entire specification, to any or all figures or drawings, and to each claim.

Embodiments of the disclosure are directed to systems, apparatuses, and methods for providing a more effective customer service support system. In some embodiments, the systems, apparatuses, and methods include use of a trained machine learning or text classification model. The trained model may be created or generated by a process that includes acquiring a corpus of documents (such as customer generated messages) from a company, generating keyphrases from each document in the corpus of documents, generating word embeddings from each document in the corpus of documents, performing a clustering operation on the word embeddings, assigning each document in the corpus to a cluster and labeling each cluster, and training a machine learning or text classification model using the most relevant documents in a cluster and the label assigned to that cluster.

In some embodiments, the systems, apparatuses, and methods include a processing flow that provides multiple ways for a user/customer to navigate and select (or identify) their desired intent or purpose in seeking customer assistance. In one part of the processing flow, a trained machine learning model and intent tree data are provided to a customer seeking assistance. The model and intent tree data may be provided in response to a customer launching a previously supplied customer service application. In some embodiments, the customer service application may be provided in response to the customer contacting a company.

The application is executed on the customer's device (such as a smartphone, tablet, laptop, desktop or other computing device) and operates to perform one or more of (a) generate a display of the intent tree data, (b) allow the customer to navigate, and if desired, select an intent in the intent tree, (c) allow the customer to provide text describing their reason for seeking assistance and cause the trained model to attempt to classify the input text with regards to its intent, (d) receive from the customer a confirmation of a selected intent from the intent tree or an identified intent from the model, and (e) provide the customer's selected intent, intent identified by the model or their entered text (in the situation where the customer does not confirm an intent) to a server or platform for routing to an appropriate “handler”. In the case of a confirmed intent selected from the intent tree or a confirmed intent identified by the trained model, the message may be routed to a Bot, webpage URL, pre-defined task or workflow, or a person. In the case of the customer not confirming an intent, their message or text may be routed to a person for evaluation, labeling and routing, and in some cases then used as part of continued training of the model.

In some embodiments, the systems, apparatuses, and methods include a user interface (UI) and process flow for implementing a conversation-based customer service support system. The user interface and associated processing enable a user/customer to quickly and accurately select an intent, goal, or purpose of their customer service request. In some embodiments, this is achieved by a set of user interface displays or screens and an underlying logic that provide a user with multiple ways of selecting, identifying, or describing the intent, goal, or purpose of their request for service or assistance. Further, the underlying logic operates to improve the accuracy of the system over time based on obtaining user feedback through their selection or the processing of entered text and the construction of a data structure representing possible user intents and the relationship between intents or categories of intents.

Note that although some embodiments of the system and methods will be described with reference to the use of a conversational interface and underlying logic as part of a customer service support system, embodiments may be used in other situations and environments. These may include commerce, finance, or the selection of other services or products. In some contexts, the described user interface and underlying logic may assist a user to submit a service request, discover a service or product of interest, initiate or complete a transaction, or generally express their goal or purpose in interacting with a system or service, as expressed by their intent, etc.

Other objects and advantages of the present invention will be apparent to one of ordinary skill in the art upon review of the detailed description of the present invention and the included figures.

BRIEF DESCRIPTION OF THE DRAWINGS

Embodiments of the invention in accordance with the present disclosure will be described with reference to the drawings, in which:

FIG. 1 is a flow chart or flow diagram of an exemplary computer-implemented method, operation, function or process for processing a user message requesting a service to determine a user's intent or the purpose of a user inquiry, in accordance with some embodiments of the systems and methods described herein.

FIG. 2A is a flow chart or flow diagram of an exemplary computer-implemented method, operation, function or process for processing training data and training a machine learning model to identify the intent or the purpose of a user inquiry, in accordance with some embodiments of the systems and methods described herein.

FIG. 2B is a flow chart or flow diagram of an exemplary computer-implemented method, operation, function or process for the client-side operations and event update flow for a process to identify the intent or the purpose of a user inquiry, in accordance with some embodiments of the systems and methods described herein.

FIG. 3 is a diagram illustrating elements or components that may be present in a computer device or system configured to implement a method, process, function, or operation in accordance with an embodiment of the invention;

FIG. 4 is an illustration of an example of a static user interface display that an end-user may use to choose from a static list of issue titles or subjects; and

FIGS. 5-7 are diagrams illustrating an architecture for a multi-tenant or SaaS platform that may be used in implementing an embodiment of the systems and methods described herein.

Note that the same numbers are used throughout the disclosure and figures to reference like components and features.

DETAILED DESCRIPTION

The subject matter of embodiments of the present disclosure is described herein with specificity to meet statutory requirements, but this description is not intended to limit the scope of the claims. The claimed subject matter may be embodied in other ways, may include different elements or steps, and may be used in conjunction with other existing or later developed technologies. This description should not be interpreted as implying any required order or arrangement among or between various steps or elements except when the order of individual steps or arrangement of elements is explicitly noted as being required.

Embodiments of the invention will be described more fully herein with reference to the accompanying drawings, which form a part hereof, and which show, by way of illustration, exemplary embodiments by which the invention may be practiced. The invention may, however, be embodied in different forms and should not be construed as limited to the embodiments set forth herein; rather, these embodiments are provided so that this disclosure will satisfy the statutory requirements and convey the scope of the invention to those skilled in the art.

Among other things, the present invention may be embodied in whole or in part as a system, as one or more methods, or as one or more devices. Embodiments of the invention may take the form of a hardware implemented embodiment, a software implemented embodiment, or an embodiment combining software and hardware aspects. For example, in some embodiments, one or more of the operations, functions, processes, or methods described herein may be implemented by one or more suitable processing elements (such as a processor, microprocessor, CPU, GPU, TPU, controller, etc.) that is part of a client device, server, network element, remote platform (such as a SaaS platform), an “in the cloud” service, or other form of computing or data processing system, device, or platform.

The processing element or elements may be programmed with a set of executable instructions (e.g., software instructions), where the instructions may be stored on (or in) a suitable non-transitory data storage element. In some embodiments, one or more of the operations, functions, processes, or methods described herein may be implemented by a specialized form of hardware, such as a programmable gate array, application specific integrated circuit (ASIC), or the like. Note that an embodiment of the inventive methods may be implemented in the form of an application, a sub-routine that is part of a larger application, a “plug-in”, an extension to the functionality of a data processing system or platform, or any other suitable form. The following detailed description is, therefore, not to be taken in a limiting sense.

The service request routing problem (or more generally, the interpretation and processing of a user's text message as provided by a conversational interface, such as a chat window or other format) is one to which Natural Language Processing (NLP) based Machine Learning (ML) models can be applied. Such models can be trained to learn implicit rules from actual text message data or examples. This means that if a suitable set of training data and labels/annotations are available, then a model may be trained to assist in identifying or classifying incoming service requests. Thus, if one has access to hundreds (or more) examples of messages and the corresponding labels or annotations (e.g., the correct group or department each message should be routed to), then a machine learning (ML) classification algorithm can be applied to create a model that will have a relatively high degree of accuracy and be able to perform (or at least assist in) the routing function.

While a trained Machine Learning model can be very helpful in routing a service request from a customer to the appropriate agent or subject matter expert, such models can be difficult for many organizations to create. For example, the labels used to annotate messages need to be clearly distinct from each other and to accurately reflect the workflow within the organization for handling service requests. In addition, the input data (message examples) needs to be “clean” and not subject to misinterpretation. This requires a company or organization using the model for routing service requests to provide appropriate training data and they may not understand how to do this effectively.

A second type of problem that may be encountered when attempting to implement an automated or semi-automated service request routing process is that workflows attached to such a system are automatically invoked without confirmation from the end-user, who may have had a different intention or goal of their request. For example, “I want my money back” may need to be classified as “refund”, but “I got charged twice. I want my money back” may need to be classified as a “billing” issue instead. This can lead to frustration and dissatisfaction on the part of a customer/user and increased organizational resources being needed to resolve the problem and maintain customer goodwill.

Existing solutions to assist a customer/user to route their request to the appropriate customer service agent, process, or function are generally of two types:

(1) Static Menu

A static menu interface is one where an end-user is asked to choose from a static list of issue titles or subjects. An example of such a user interface display is shown in FIG. 4. While helpful to some extent, the disadvantages of this approach include the following:

-   -   The end-user is expected to understand what each title means and         to interpret it as intended by the person who assigned that         title, e.g., a user may not understand the term “venue” and may         be looking for “location” or “where”; and     -   A company or brand is expected to pay attention to the major         categories of incoming service tickets and be able to process         those categories of messages by continually curating the list of         issue categories in the static menu as new categories are needed         or as currently available categories need to be redefined.

(2) NLP Based Routing

This type of solution is an NLP engine (e.g., Siri or Alexa). In this solution, there is a Natural Language Processing model that tries to understand the meaning of the sentence or phrase entered by a user, and each meaning is attached to a workflow. However, a problem with this approach is that human languages are very expressive, and people can have the same intent but express their request in different ways. This means that for a routing engine to be effective and correctly handle a large percentage of submitted requests, it would need to be trained for all of the possible (or at least the most likely) ways of expressing a request for a particular service. This places a burden on the company or brand wanting to use a trained model for routing service requests to have comprehensive training data, and even then, there is a low confidence level in achieving a desired level of success and often unclear expectations on the accuracy of the routing engine.

As another example, the assignee of the present disclosure/application has developed a customer service request issue classification service/model referred to as “Predict.” Predict is a server-side text classification engine that is intended to determine the most likely label (typically a category or routing destination) for an incoming service request. However, the results are not exposed to the user and are only used for internal routing within the platform. The inputs used to train the Predict model are multiple pairs of data, with each pair comprising a label and a user's first service request message. The model is trained on these pairs using a supervised ML algorithm. Once the Predict model is trained, it operates to receive as an input a new user's first message, and in response it provides as an output a prediction of what the correct label for the message should be. When the classification/prediction has a sufficiently high-confidence level associated with it, the message is automatically routed to the group or department corresponding to the output label.

However, a limitation of this approach is that Predict operates to predict the correct “label” for a request on the server-side or service platform. An unfortunate consequence of this architecture is that if there is a workflow attached to the label, then the end-user is immediately taken to a bot or routine (or other form of handler) to execute the workflow. This can be a serious problem for the user in the situation where the classification or label was incorrect, as it can be both frustrating and inefficient. Further, as with the other approaches described, there are one or more possible problems that may occur as a result of the Predict processing flow:

-   -   1. Predict is expected to have a high degree of confidence in         its predictions, so that once the confidence level for         classifying a new message crosses a pre-set threshold, the         system automatically applies the output of the model to the         request/ticket. This means that the labels used to classify and         route messages need to accurately reflect an organization's         desired processing of requests. It also means that the labels         (and hence routing possibilities) need to be regularly reviewed         and corrected or updated to reflect how the organization is         actually processing requests; and     -   2. Workflows attached to Predict are automatically invoked         without confirmation or other feedback from the end-user, who         may have had a different intention or goal of the request. This         can lead to frustration and dissatisfaction on the part of a         customer/user.

In some embodiments, the proposed solution and processing described herein overcomes these disadvantages by providing a form of compromise between, and improvement over, the approaches represented by existing solutions. In some embodiments, a user's request for assistance is associated with an “Intent”, where an intent is an issue topic, subject or category that reflects the user's intention or purpose for seeking assistance (or in some cases, a goal of their interaction with a system as expressed by their intent). Typically, responding to an inquiry or assisting a customer to achieve an intent has a workflow associated with it, where the workflow may be performed by a “handler” such as a Bot, workflow, routine, or person. In the proposed solution described herein, a hierarchy or arrangement of intents (or data structure) that represents the relationships between different categories, sub-categories or classifications of intents is termed an “intent tree”.

In some embodiments, the systems, apparatuses, and methods described herein provide an end-user with one or more of a user interface display, user-interface elements (such as a selectable “intent”, a hierarchical intent tree, and/or a text entry field) and underlying data processing and user input processing logic, and may include:

-   -   A dynamic (i.e., one able to be updated or changed) user         interface (UI) which provides a user/customer with multiple ways         of navigating a set of issue/intent categories and ways of         helping them find the category that best matches their problem         or purpose in seeking assistance, or the task, function or         operation they desire to have performed, etc.;         -   This is beneficial, as it means an end-user is not expected             or required to understand what each category title means, or             which title represents a category or workflow that is most             applicable to their problem or issue;     -   A dynamic UI where new intents/categories can be displayed;         -   This means that the list of issue categories presented to a             user/customer is not static and can display a different or             updated list of intents when the user opens the             conversational UI in a later session;             -   In some embodiments, the updated or revised list of                 intents or intent tree structure may be constructed                 based on a customer's previous interactions with                 customer service (such as the manner in which the                 customer expresses their requests using idiom or slang,                 or the manner in which prior requests were expressed and                 subsequently classified), an updated intent tree model                 for a company, an updated text message interpretation                 model for a company, etc.;     -   In some embodiments, the UI may ask a user/customer to         explicitly confirm their intent (i.e., that the assigned or         selected category is a correct one for addressing their issue or         desired operation);         -   This means that an end-user will not be surprised to see the             workflow associated with that issue category; for example,             the workflow can be a bot that “walks” them through the             solution steps (e.g., forgot password) or a FAQ (“What is             the shipping policy?”), or the request can be assigned to a             queue where a human agent responds (e.g., reporting abuse);             and     -   If a user does not identify/select their desired intent as a         result of their navigating through the intent tree display (or         other form of representing the set of possible intents, such as         a list, hierarchy, table, etc.), then the client application         and/or remote system platform may enable the user to enter text         into a field or user interface element and utilize the trained         classification model to attempt to find a “best” match to the         text. The trained model will operate to attempt to find a         matching intent or intents to the user's text and then present         the user with this list or set of intents for possible         selection. Thus, in this aspect of some embodiments, text         entered by a user is provided as an input to the trained model,         with the output of the model being one or more “intents” that         the model has classified the input text as representing.         However, if the user's text does not sufficiently “match” an         existing intent label or the end-user chooses not to select or         confirm an intent suggested by the trained model, then         embodiments permit the user to enter a full-text question or         phrase specifying what they want or need;         -   In some embodiments, a match may depend on, for example,             finding an exact match to text, finding a sufficiently dose             match to text, finding a match to synonyms of (or other ways             of expressing) the text, etc.;         -   The full-text question or phrase is processed on the             server-side (which in some embodiments, may include human             interpretation of the text) to attempt to identify the most             relevant existing intent label or topic. Under certain             circumstances, the process may create a new intent category             or sub-category that the company or brand can assign a title             to and have added to the intent tree for use with future             requests for assistance from customers;             -   In cases where the server-side processing determines                 that the request should be associated with an existing                 intent label or category, the initial request from the                 customer and the existing (correct) label may be used as                 additional training data for the classification model                 used to process requests for that specific company.

As will be described in greater detail with reference to FIG. 1, embodiments of the user interface and supporting processing described herein provide 3 paths or sequences of navigation that are available to a user/customer as part of enabling them to select or specify their desired intent or purpose for requesting assistance. Although an embodiment described herein represents an example of using a conversational UI in the context of a user seeking customer support assistance, it is noted that other use cases and contexts exist in which the system and methods described herein can be utilized to provide benefits to users and to the organizations receiving the user requests for assistance. These use cases and contexts include but are not limited to, commerce, finance, and the selection of other services or products. In some contexts, the described user interface and underlying logic may assist a user to submit a service request, discover a service or product of interest, initiate or complete a transaction, find information, or select a workflow to accomplish a goal or purpose, etc.

FIG. 1 is a flow chart or flow diagram of an exemplary computer-implemented method, operation, function or process for processing a user message requesting a service to determine a user's intent or the purpose of a user inquiry, in accordance with some embodiments of the systems and methods described herein. As shown in the figure, an initial step is to collect or form a set of training data to be used in training a machine learning model (as suggested by step 120). In one embodiment, the training data set is comprised of a set of the first messages or requests sent by a plurality of users/customers along with an assigned label or classification for each message. The label or classification represents the “correct” category or routing of the message, as curated by a person familiar with the routing categories and classifications used by the brand or company whose customers generated the messages.

Thus, in this embodiment, a machine learning model is trained for use in processing incoming service requests from end-users to a specific company, business, vendor, or organization (referred to as the “company” herein). In this example, the company may have its own titles or task categories that are used for processing and routing incoming requests to specific work groups or departments. These titles or task categories will be reflected by the “correct” label(s) or annotations associated with a message or request. In a typical embodiment, this acquisition of training data and training of a machine learning model will occur on a server or platform.

In some examples, the training of the machine learning model may be performed or assisted by the entity providing the other functionality of the processing flow illustrated in FIG. 1. For example, the same entity that operates a system or services platform to provide message processing and routing services may provide tools to enable a company to upload a sample of customer service request messages and to enable an employee of the company to provide proper annotations or labels to those messages. The uploaded messages and labels can be used by the service platform provider to create the trained machine learning model for that company. The trained model is provided to the company's customers as described herein. In other examples, the company itself may generate the trained model and provide it to the entity operating the service platform.

Thus, in some embodiments, the entity operating the service platform for processing customer service requests (or providing that service through a multi-tenant platform operated by another entity) may provide a set of services through each account they administer on the platform. Each account may be provided with a set of functions and services, as described with reference to FIGS. 5-7. The functions and services may include one or more of the following:

-   -   a process or service to acquire a corpus of documents (such as         customer generated messages) from a company or organization;         -   a in some examples, the corpus may be obtained from a source             of examples of customer service requests that were (or might             be expected to be) received by the company or organization;     -   a process or service to generate keyphrases from each document         in the corpus of documents;     -   a process or service to generate word or token embeddings from         each document in the corpus of documents;     -   a process or service to perform a clustering operation on the         word or token embeddings;     -   a process or service to assign each document in the corpus to a         cluster and enable curation and labeling of each cluster;     -   a process or service to train a machine learning model using the         most relevant documents in a cluster and the label assigned to         that cluster;     -   a process or service to provide the trained model and a data         structure representing an “intent tree” of possible categories         of requests for assistance to the company's customers when they         request assistance, send a message to a customer support         address, or launch a customer service application (or otherwise         indicate a need for assistance);     -   a process or service to provide an application (if it has not         already been provided) to the company's customers to display and         enable customers to “navigate” the intent tree, to select a         desired intent or category of assistance, to confirm a selected         intent, to allow a customer to insert text and have that text         classified by the trained model, and to confirm their acceptance         of the classification produced by the trained model;     -   a process or service to allow a customer to insert text, a         phrase, a question, or a sentence (as examples) into a field of         a user interface and have the contents of the field provided to         the server/platform for further evaluation and processing         (typically by a person); and     -   a process or service to provide a mechanism (typically either         through the application or a service on the platform) to route a         message or request to the appropriate “handler”, task, workflow,         Bot, URL, person or department of the company for resolution         after determination of the customer's intent or goal in         requesting assistance.

The model is trained using the set of training data so that it operates to receive as an input a text or other form of message from a user/customer and in response operates to output a label or classification of the input message, where the label or classification represents the correct category of the request or customer service topic and identifies where the request should be routed. Thus, the trained model operates to receive a user's service request or message and identify the intent or purpose of the user's service request or message (step 122).

The trained model is made available to the company to provide to customers requesting service and/or may be provided to customers by the entity providing the other functionality of a service platform, such as the message/request processing. In a typical example, the company or system/platform receives a text or other form of message requesting assistance from a customer (as suggested by step or stage 123). In some embodiments, the text or message may be sent by a customer to a server using the client-side application. For instance, a customer may inform a brand or company that they seek customer service assistance by using a text message sent to a customer service number. In some embodiments, a customer may instead send a snippet of text to a customer service email address. In some embodiments, the text message or snippet of text may be (re) directed to an account on the service platform. In some embodiments, the company may receive the text message or snippet of text and route it to the service platform.

In response to the customer's request, the system/platform or company transfers the trained intent classification model to a client device of the customer (step 124). If not already installed on the client device of the customer, the system/platform or the company may direct the customer to download and install a customer service application on their device. The client device loads the trained model and displays the intent tree to the customer by generating a display or screen showing the intent groups or categories and their relationships (typically in a visual and hierarchical form, although others, such as a list having multiple levels, are also possible to use) (step 126). In some embodiments, when a customer launches a client-side application, the system/platform may transfer the trained model and data representing an intent tree for a company to the customer.

The user or customer is able to navigate the displayed intent tree using user interface elements or controls on their device and if desired, select a category or subject title/label that best corresponds to the intent or purpose of their service request or message (step 128). If the user has selected an intent corresponding to their request for service, then the request is routed to the appropriate department (as suggested by step 135), either directly by the company or indirectly through the service platform.

If the user/customer is unable or chooses not to select one of the displayed intent groups or a specific intent type, then they may enter text and have that text used as a basis for finding a “match” to a label of the intent tree. In some embodiments, this may be done by enabling the user to enter text into a text box or field that is displayed. The entered text can be a partial or total phrase (such as one or more words) that the user believes describes the subject matter of their service request or the purpose of their interaction (such as to initiate a transaction, search for a product, find a specific piece of information about a product or service, etc.). As the user is entering text (or after completion of a word or phrase), the transferred classification model is invoked and used to generate one or more potential matches to the entered text, with that match or those matches displayed to the user on the client device (step 130). In some embodiments, the “match” processing described may be based on one or more of an exact match between a label and the user's text, a sufficient similarity to the user's text, and/or a match based on a synonym to (or other way of expressing) the user's text.

In some embodiments, the trained model may instead be executed on the server or platform side. In these embodiments, the trained model does not need to be provided to the client. Instead, the user's text would be transferred from the client to the server, the matching to intents would be performed on the server-side, and the results of the matching would be provided back to the client for display on the device.

The user is provided with an opportunity to select and/or confirm that one of the displayed intents corresponds to their intent or purpose for the service request. If the user confirms an intent corresponding to their request for service, then the request is routed to the appropriate department (as suggested by step 135) by the server or platform. Note that the confirmation stage or step may be provided in response to the user/customer selecting a displayed intent or category, or in response to the user entering text which is classified by the trained model, where the model is configured to provide one or more outputs representing the most likely intent or category corresponding to the input text.

If the user is unable or unwilling to select/confirm one of the displayed intents or one suggested by the trained model, then they can enter a full text message into a displayed field (step 132). The full text message is transferred to the server or platform hosting the classification model where it may be subject to routing and/or human assessment for ultimately assisting the user. Further, the transferred message may be used for purposes of training the model, updating how an intent is characterized, adding a new intent to the intent structure, processing using a clustering or other machine learning model to determine if the user's message should be associated with an existing group or subject, etc. (step 134). In some cases, the full text request may be evaluated by a human “handler” or curator to determine if the request should be associated with an existing category or label (and if desired, used as training data for the model), or if a new category, sub-category or label should be proposed for use with the customer's initial message as part of training the model for the company.

In some embodiments, the entity operating the service platform (such as the assignee of the present application) provides the functionality or capability for (a) customer messaging, (b) intent tree display and intent selection by a customer, and (c) intent classification based on customer text entry using a trained model to customers of the company. As noted, the data (previously received customer messages) and data labels used to train the model are provided by the company or with their assistance, with the model training being performed by the entity operating the service platform. The data labels are also used by the entity to build the intent tree or other list or structure of the possible intents. In some embodiments, the intent tree structure is built, curated and then used as part of the labeling/annotation for the model training process.

In some embodiments, the intent tree is displayed based on intent tree data provided to the client by the server upon a customer initiating a service request. In these embodiments, once a customer begins entering text into a messaging field in the application (or placing a cursor in a specific field or otherwise indicating a need for assistance, such as by launching the customer service application), the application may automatically generate a display showing the intent tree structure (for example, a hierarchical listing). Thus, in these embodiments, the downloaded client application loads the intent tree and the trained model into the customer's device. The application displays the intent tree in a list format, although other formats may be used (e.g., a graphical display). The user/customer may navigate the tree structure and select an intent that best corresponds to their intended request. In these embodiments, the trained model is not utilized when the user is navigating the intent tree using one or more user interface elements or controls.

If the customer does not select an intent from the navigation of the tree and enters text, then the trained model is invoked and used to attempt to find a match of the entered text to an intent. In this situation, the customer's entered text is treated as a model input and the trained model operates to generate an output representing the label or classification for the input. The label or classification corresponds to the model's “best” estimate of the intent associated with the input text. The client application displays the most relevant intents from the results of the matching process on the client device. If the customer selects an intent either from the navigation of the intent tree structure or from the results of the matching process, then the user may be asked to confirm their intent and the request is routed to the appropriate handler by the server or platform (as suggested by step or stage 135). If the user does not select and/or confirm an intent (whether from the displayed intent tree structure or provided by the output of the trained model), then the user provided message may be used as feedback or additional training data for the clustering algorithm.

In some embodiments, the intent tree contains the names of the intents as well as information on their organization and layout (e.g., their hierarchical structure and relationships). The trained model is used when searching the intent tree based on user-provided (typed) text or messages. For surfacing the most-likely intent(s) for a given user text input, the model (for finding the best matching intent), as well as the intent tree (for intent names and hierarchical information), are used.

FIG. 2A is a flow chart or flow diagram of an exemplary computer-implemented method, operation, function or process for processing training data and training a machine learning model to identify the intent or the purpose of a user inquiry, in accordance with some embodiments of the systems and methods described herein. Note that each “block” or module shown in the diagram and referred to in the following description may represent a routine, sub-routine, application, etc. that is implemented by the execution of a set of software instructions by a programmed electronic processor. In some embodiments, more than one programmed electronic processor may implement the functions associated with an illustrated block or module by executing the corresponding software instructions in whole or in part. Thus, in some embodiments, a plurality of electronic processors, with each being part of a separate device, server, or system may be responsible for executing all or a portion of the software instructions contained in an illustrated block or module.

As shown in the figure, at block 102 the text of a set document(s) is input to the processing flow for training a machine learning model. In some embodiments, a document corresponds to a message submitted in the context of a text-based conversational experience. The collection of documents used for training a model is referred to as the corpus. In a typical use of the systems and methods described herein, the corpus is obtained from a specific company or business and a model is being trained for use by customers of that company or business.

In some embodiments, the corpus may be obtained from a database of messages from one or more companies that have been collected by the entity providing the trained model(s). In these cases, a set of messages provided by multiple companies may be used to increase the variety in types and wording of customer service requests. For example, if a company does not have a sufficiently large corpus of messages, then messages from other companies in a similar industry may provide a suitable corpus for training a model.

The text of the document(s) may be pre-processed, as suggested by block 104. During pre-processing, one or more of the following operations may be performed on each document:

1. remove html, URLs, numbers, emojis;

2. break document into sentences;

3. break sentences into words;

4. remove single characters; and

5. remove stop words based on a language dependent reference list.

Block 106 then utilizes the pre-processed data—which at this point is a list of unigrams (single words)—to build/construct all possible bigrams (combinations of two subsequent words, i.e., two words that appear next to each other) and trigrams (combinations of three subsequent words) on a document-by-document basis. All possible n-grams across the corpus (where n is equal to 3 in this example but may be a different number) are taken as keyphrase candidates (i.e., possible keyphrases). Term frequency-inverse-document-frequency (tf-idf) scoring is used to rank all n-gram keyphrase candidates (although other scoring or evaluation methods may be used). The top (e.g., 1,000 or another sufficiently large number) keyphrases in this ranking are selected for clustering. The appropriate or optimal number of selected keyphrases may depend on the application as well as on the variety of subject matters inherent to the corpus.

In general, the amount or number of keywords selected for clustering may depend upon the use case and variety encountered in the corpus. For example, based on the work of the inventors, 1000 key phrases proved to be a good compromise for the use case of customer support. However, as the inventors learned, too few keyphrases may limit the granularity that can be achieved (i.e., the ability to separate related but different intents). Similarly, too many keyphrases can result in increased noise and reduced quality of the final intent separation and document assignments to intents.

Note that other methods for extracting or identifying keyphrases from a corpus of documents are available and may also (or instead) be used; in deciding upon the extraction method to utilize, a model developer should consider that the appropriate number of selected keyphrases depends on the application, as well as on the variety of subject matters inherent to the corpus. As an example, the list of keyphrases should provide coverage of all primary subject matters in the corpus, while each keyphrase should be relevant to one or more of these subject matters.

The approach described herein is based (at least in part) on consideration of the results obtained and the context in which the technique was being used, including practical implementation and usage considerations. These practical considerations include a relative ease of implementation, the scaling metric being interpretable and the results being reproducible for multiple languages considered relevant for the business application (customer service) and the “intent surfacing” process.

In block 108 the process uses the pre-processed corpus of documents to build word embeddings, which are dense numerical representations of words. The word embeddings may be built using Word2vec (a technique for natural language processing the Word2vec algorithm uses a neural network model to learn word associations from a large corpus of text), or a similar application which may be used to accomplish the function. The Word2vec algorithm is applied to all (pre-processed) documents of the input corpus. Where they appear in the documents, the keyphrases selected in 106 are considered single tokens during processing. As such, the Word2vec algorithm will provide a separate embedding vector for each unique token in the corpus, including the keyphrases (therefore identical tokens in different documents will have the same embedding vector). Note that a token is an individual unit of text, most commonly a word, but can also represent a multi-word phrase. The final embedding vectors of the keyphrases are then normalized and subjected to the clustering operation. During that operation, the keyphrases are separated into k clusters.

The Word2vec algorithm is trained on the (pre-processed) input corpus. Block 110 performs a clustering operation on the normalized word embeddings for the keyphrases selected in block 106 and clusters those into k clusters. In this disclosure, word embeddings are used because they represent text in a way that captures similarities between words. As such, words with similar or related context or subject matter are closely aligned in the embedding space. As a consequence, the clustering of word embeddings can result in grouping keyphrases according to their subject matter. Note that keyphrases are considered tokens in the processing phase and the Word2vec algorithm provides one embedding vector for each token in the corpus. Thus, after the word-embeddings stage of the processing, there results a one-to-one mapping of tokens (including keyphrases) to embedding vectors.

In some embodiments, the process uses the KMeans algorithm to duster the keyphrases as expressed in the embedding space (i.e., the embedding vectors for each keyphrase). In one embodiment, the standard KMeans clustering is modified to utilize cosine similarity as the relevant metric. The output of the clustering process is a unique assignment of each of the input keyphrases to a cluster.

Each document may then be assigned to a duster based on the keyphrases present in the document. In one embodiment, for each keyphrase present in the document, the process records the tf-idf score and its cluster assignment. For a given document, a cumulative tf-idf score is calculated for each cluster by summing keyphrase tf-idf scores based on their cluster assignment. In one example embodiment, the document is assigned to the cluster which provides the highest cumulative tf-idf score of keyphrases within the document. This means that the cluster to which a document is assigned is the one containing the keyphrases/embeddings found to be most similar to the keyphrases in the document.

In some embodiments, clustering may be performed in several layers or hierarchies: a first clustering may be performed on the entire keyphrase collection. In the case of additional layers, each of the resulting clusters may again be clustered in a similar fashion. However, the input to the clustering process is constrained to the normalized word embeddings for the keyphrases that were assigned to the respective parent duster during the first clustering process.

Note that other techniques/algorithms to create “Intent trees”/“intent hierarchies” may be used. For the general process and goals described in this application, the particular clustering/grouping algorithm used is not constrained to the approach described. Another approach that delivers a grouping of documents based on subject matter would also be applicable and could be used. The approach described herein was selected because it outperformed other approaches that were evaluated for the particular use case and datasets of interest.

The output of the clustering process, in terms of depth and/or width, depends on the properties of the input corpus, as well as on the context of the application of the resulting trained model. For example, overly granular clustering may result in redundant clusters (i.e., several clusters sharing or representing the same general subject matter) or may not be desired from a business perspective (i.e., it may limit options for efficient navigation by the end user). Overly coarse clustering may group keyphrases with unrelated subject matter into the same duster and be a source of confusion or ambiguity.

For each layer of clustering, the output or result of the clustering is a unique assignment of the keyphrases and relevant documents to a duster. An example of the intent tree or hierarchy resulting from the clustering is shown in the box labeled “Intent Tree” in the figure. As shown, the set of documents is assigned to a hierarchical arrangement of Intents and Sub-Intents, with each Intent and Sub-Intent being associated with one or more keyphrases and documents. In block 112 the process uses this grouping of keyphrases and documents for intent curation. For each duster, manual (or in some embodiments, semi- or fully automated) inspection of the keyphrases and documents assigned to that cluster informs the curator (e.g., someone familiar with the operational flow of the customer support process for the company that provided the documents) of the general “Intent” of the cluster.

As mentioned, in some embodiments, the system and process described herein may use the comprehension and inputs of a person acting as a curator to assign succinct and descriptive titles to the clusters. In some embodiments, this labeling or curation may be performed in an automated or semi-automated fashion using a trained machine learning model. In one embodiment, an automated or semi-automated approach may include:

-   -   labeling clusters by their most representative keyphrases;     -   labeling clusters by using the most frequent words (or phrases)         in the documents assigned to the cluster; or     -   applying text summarization techniques on the documents assigned         to the cluster to determine cluster labels.

In one example, an Intent Tree or Intent Hierarchy may be constructed using a bottom-up approach: first the clusters on the most granular (bottom) layer of the clustering are named. If appropriate, these Intents may be grouped into several groups or “parent” categories. For the purpose of naming or surfacing, these parent or higher-level categories of intents are considered an aggregation of the curated Intents grouped within them.

Each duster now has an Intent or label assigned to it. Also, each duster has a list of the most relevant documents corresponding to that intent as a result of the document assignment clustering performed in block 110. This information is used to build a labeled training data set for each cluster. Block 114 takes the most relevant documents for each cluster on the most granular (or bottom) level and labels them using the appropriate Intent as curated in block 112. These “Intent-document” pairs are used to train a model using a supervised text classification algorithm based on the Naive Bayes principle (although other classification techniques may be used in addition to or instead). The result is a trained text classification model or machine learning model that operates to evaluate an input document/message and produce as an output a classification of the document, where the classification identifies the appropriate intent of the document (such as to seek customer assistance with their account, etc.).

Note that although in some examples, the Naive Bayes methodology is used, other supervised text classification algorithms may instead (or also) be used. Further, alternative supervised text classification algorithms may not utilize a term-intent matrix as described here for the example of using the Naive Bayes method. Instead, and depending on the specific algorithm, they may utilize other ways to encode a prediction model. In that case, differences may extend to the training, prediction, update and other processes, as described herein and with reference to the other figures.

The resulting trained text classification model is represented by a term-Intent matrix and an intent hierarchy. Note that in this context, “term” is typically equivalent to “token” or “word” (where for some languages or phrases, each token may represent something other than what is typically considered a word in another language). A “word-intent matrix” is an aspect of the Naive Bayes algorithm that encodes the relative importance of all “words” in the model across all “intents” in the model. As such, it is noted that the concept of a “word-intent matrix” may not apply to other classification models or approaches that may be chosen to perform a similar task. In some embodiments, the Naive Bayes algorithm was chosen for implementation because it is relatively easy to implement, relatively fast to execute and the model size can be controlled. All these aspects were relevant for on-device execution of the classification processing.

In some embodiments, the term-intent matrix and the Intent hierarchy (as represented by a data structure such as a hierarchical tree or list) are transferred to the customer's client device in block 116 when a text-based conversational experience is initiated on the client side. Text inputs on the client side are evaluated by the trained model using the term-intent matrix, which provides a probability distribution across all intents for the input. A set of intents are then surfaced on the client in a visual manner, with the set ranked in accordance with their probability scores and serving as suggestions for the most likely intent corresponding to the user's text input.

The user interface (UI) displays, and underlying processing logic are described in U.S. Provisional Patent Application No. 62/964,539, entitled “User Interface and Process Flow for Providing an Intent Suggestion to a User in a Text-Based Conversational Experience with User Feedback”, referred to previously in this application. As mentioned, in some cases a user may identify or select an intent from a displayed intent tree or other data structure to indicate the goal of their inquiry. In other cases, they may enter text into a text entry field in the user interface and the trained model will be used to evaluate the entered text and attempt to “match” it to an intent or intents as described.

FIG. 2B is a flow chart or flow diagram of an exemplary computer-implemented method, operation, function or process for the client-side operations and event update flow for a process to identify the intent or the purpose of a user inquiry, in accordance with some embodiments of the systems and methods described herein. As shown in FIG. 2B, text inputs on the client side are evaluated in block 202 using the term-intent matrix described with reference to FIG. 2A, which provides a probability distribution across all intents for the input text. The intents are then presented to a user on the client device in a visual display or other suitable manner, ranked in accordance with their probability scores. If one of the surfaced intents matches the user's intent, then the user may select that intent and enter a downstream workflow or experience tailored to be responsive to the selected intent (block 204). The workflow may include, for example, direction of the user to a FAQ page, initiation of a programmed chat bot process to collect information or providing the message to a human service agent.

The words (text fragments) that the user entered before choosing an intent, together with the intent that was eventually selected, may be recorded in block 206 on the server side. This pairing of text fragment and selected intent can be considered a labeled training example for updating the trained text classifier. An update process for the model is performed in block 208 on a regular basis in an automated fashion. The resulting, updated term-intent matrix as well as the revised intent tree or other intent hierarchy are transferred to the client in block 220 when a text-based conversational experience is initiated on the client side. In some embodiments, this doses the loop to block 202.

If the user chooses not to engage in a downstream workflow or experience—possibly because the customer did not select one of the displayed intents and no matching intents (or sufficiently closely matching in the opinion of the user) were presented or otherwise surfaced—then the user may submit a message to start a text-based conversation (block 210). Such messages are recorded and pooled on the server side (block 212). At regular time or event count intervals, this pool of recorded messages (which do not have an intent attached to them) may be used to discover new intents not currently represented in the current intent tree (block 214). This discovery may be performed in an automated, semi-automated, or completely human driven process.

If a new intent is discovered, then the most relevant messages assigned to the new intent from the pool of submitted messages are used to define labeled training data for this intent (block 216). In one embodiment, a Human's comprehension ability is used as a curator to assign succinct and descriptive titles to the new intents and to place them into the existing intent tree or other form of hierarchy at the appropriate location and level. Combining the new training data and labels with the existing model (block 218) creates an updated model which includes the new intent(s). The resulting, updated term-intent matrix as well as the intent hierarchy are provided to the client in block 220 when a text-based conversational experience is initiated on the client side. In some embodiments, this closes the loop to block 202.

As noted, in some embodiments, the inventive system and methods may be implemented in the form of an apparatus that includes a processing element and a set of executable instructions. The executable instructions may be part of a software application and arranged into a software architecture. In general, an embodiment of the invention may be implemented using a set of software instructions that are designed to be executed by a suitably programmed processing element (such as a GPU, CPU, microprocessor, processor, controller, computing device, etc.). In a complex application or system such instructions are typically arranged into “modules” with each such module typically performing a specific task, process, function, or operation. The entire set of modules may be controlled or coordinated in their operation by an operating system (OS) or other form of organizational platform.

Each application module or sub-module may correspond to a particular function, method, process, or operation that is implemented by the module or sub-module. Such function, method, process, or operation may include those used to implement one or more aspects of the inventive system and methods. The application modules and/or sub-modules may include any suitable computer-executable code or set of instructions (e.g., as would be executed by a suitably programmed processor, microprocessor, or CPU), such as computer-executable code corresponding to a programming language. For example, programming language source code may be compiled into computer-executable code. Alternatively, or in addition, the programming language may be an interpreted programming language such as a scripting language.

As described, the system, apparatus, methods, processes, functions, and/or operations for implementing an embodiment of the disclosure may be wholly or partially implemented in the form of a set of instructions executed by one or more programmed computer processors such as a central processing unit (CPU) or microprocessor. Such processors may be incorporated in an apparatus, server, client or other computing or data processing device operated by, or in communication with, other components of the system. As an example, FIG. 3 is a diagram illustrating elements or components that may be present in a system, server, platform or computing device 300 configured to implement a method, process, function, or operation in accordance with an embodiment of the invention.

The subsystems shown in FIG. 3 are interconnected via a system bus 314. Additional subsystems include may include input/output devices 322, communications elements 324, and additional memory or data storage devices 326. The interconnection via the system bus 314 allows one or more processors 330 to communicate with each subsystem and to control the execution of instructions that may be stored in a module 302 in memory 320, as well as the exchange of information between subsystems. The system memory 320 and/or the memory devices 326 may embody a tangible computer-readable medium.

Modules 302 each may contain a set of computer-executable instructions, which when executed by a programmed processor 330 will cause system, server, platform, or device 300 to perform one or more operations or functions. As mentioned, typically modules 302 include an operating system 303 which performs functions involved in accessing and transferring sets of instructions so that the instructions may be executed.

Note that the functions performed by execution of the instructions contained in modules 302 may be the result of the execution of a set of instructions by an electronic processing element located in a remote server or platform, a client device, or both. Modules 302 may include Obtain Corpus of Text 304 (which contains instructions which when executed perform some or all of the operations associated with block 102 of FIG. 2A), Pre-Process Each Document/Message in Corpus Module 305 (which contains instructions which when executed perform some or all of the operations associated with block 104 of FIG. 2A), Generate and Rank Possible Keyphrases Module 306 (which contains instructions which when executed perform some or all of the operations associated with block 106 of FIG. 2A), Generate Word or Token Embeddings from Corpus Module 308 (which contains instructions which when executed perform some or all of the operations associated with block 108 of FIG. 2A), Perform Clustering on Word or Token Embeddings Module 309 (which contains instructions which when executed perform some or all of the operations associated with block 110 of FIG. 2A), Assign Each Document/Message in Corpus to a Cluster and “Label” Each Cluster Module 310 (which contains instructions which when executed perform some or all of the operations associated with building the Intent Tree and block 112 of FIG. 2A), and Use Most Relevant Documents in Each Cluster and Cluster Label to Train Text Classification Model Module 312 (which contains instructions which when executed perform some or all of the operations associated with block 114 of FIG. 2A).

As mentioned, each module may contain a set of computer-executable instructions. The set of instructions may be executed by a programmed processor contained in a server, client device, network element, system, platform or other component. A module may contain instructions that are executed by a processor contained in more than one of a server, client device, network element, system, platform or other component. Thus, in some embodiments, a plurality of electronic processors, with each being part of a separate device, server, or system may be responsible for executing all or a portion of the software instructions contained in an illustrated module.

In some embodiments, the functionality and services provided by the system and methods described herein may be made available to multiple users by accessing an account maintained by a server or service platform. Such a server or service platform may be termed a form of Software-as-a-Service (SaaS). FIG. 5 is a diagram illustrating a SaaS system in which an embodiment of the invention/disclosure may be implemented. FIG. 6 is a diagram illustrating elements or components of an example operating environment in which an embodiment of the invention/disclosure may be implemented. FIG. 7 is a diagram illustrating additional details of the elements or components of the multi-tenant distributed computing service platform of FIG. 6, in which an embodiment of the invention/disclosure may be implemented.

In some embodiments, the corpus processing and text classification model training processing system or service(s) described herein may be implemented as micro-services, processes, workflows or functions performed in response to the submission of a message or service request. The micro-services, processes, workflows or functions may be performed by a server, data processing element, platform, or system. In some embodiments, the services may be provided by a service platform located “in the cloud”. In such embodiments, the platform is accessible through APIs and SDKs. The described corpus processing and text classification model training services may be provided as micro-services within the platform for each of multiple users or companies, with each of those companies having a specific trained model and application available for download to their customers seeking assistance. The interfaces to the micro-services may be defined by REST and GraphQL endpoints. An administrative console may allow users or an administrator to securely access the underlying request and response data, manage accounts and access, and in some cases, modify the processing workflow or configuration.

Note that although FIGS. 5-7 illustrate a multi-tenant or SaaS architecture that may be used for the delivery of business-related or other applications and services to multiple accounts/users, such an architecture may also be used to deliver other types of data processing services and provide access to other applications. For example, such an architecture may be used to provide corpus processing and text classification model training services to assist end-users to resolve requests for customer support. Although in some embodiments, a platform or system of the type illustrated in FIGS. 5-7 may be operated by a 3^(rd) party provider to provide a specific set of business-related applications, in other embodiments, the platform may be operated by a provider and a different business may provide the applications or services for users through the platform. For example, some of the functions and services described with reference to FIGS. 5-7 may be provided by a 3^(rd) party with the provider of the trained models and client application maintaining an account on the platform for each company or business using a trained model to provide services to that company's customers.

FIG. 5 is a diagram illustrating a system 500 in which an embodiment of the invention may be implemented or through which an embodiment of the corpus processing and text classification model training services described herein may be accessed. In accordance with the advantages of an application service provider (ASP) hosted business service system (such as a multi-tenant data processing platform), users of the services described herein may comprise individuals, businesses, stores, organizations, etc. A user may access the services using any suitable client, including but not limited to desktop computers, laptop computers, tablet computers, scanners, smartphones, etc. In general, any client device having access to the Internet may be used to provide a request or text message requesting customer support services and to receive and display an intent tree model. Users interface with the service platform across the Internet 513 or another suitable communications network or combination of networks. Examples of suitable client devices include desktop computers 503, smartphones 504, tablet computers 505, or laptop computers 506.

Corpus Processing and Text Classification Model Training system 510, which may be hosted by a third party, may include a set of Corpus Processing and Text Classification Model Training services 512 and a web interface server 514, coupled as shown in FIG. 5. It is to be appreciated that either or both of the Corpus Processing and Text Classification Model Training services 512 and the web interface server 514 may be implemented on one or more different hardware systems and components, even though represented as singular units in FIG. 5. Corpus Processing and Text Classification Model Training services 512 may include one or more functions or operations for the processing of a received corpus of text to generate a trained text classification model for use in providing customer support services for a specific company or organization.

In some embodiments, the set of applications available to a company may include one or more that perform the functions and methods described herein for receiving a corpus of documents/messages from a company or organization, pre-processing each document/message in the corpus, generating and ranking possible keyphrases), generating word embeddings from the corpus, performing clustering on the word embeddings, assigning each document message in the corpus to a cluster and labeling each cluster, and using the most relevant documents in each cluster and the cluster label to train a text classification model for the company or organization. As discussed, these functions or processing workflows may be used to provide a customer with a more efficient and effective response to their inquiry or request for customer support.

As examples, in some embodiments, the set of applications, functions, operations or services made available through the platform or system 510 may include:

-   -   account management services 516, such as         -   a process or service to authenticate a customer, company or             organization wishing to utilize the services and             functionality of the platform;         -   a process or service to receive a request from the company             or organization to provide the platform with a corpus of             documents/messages for use in generating a trained text             classification/machine learning model to be used in             responding to customer service requests;         -   an optional process or service to generate a price for the             requested services or a charge against a service contract;         -   a process or service to generate a container or             instantiation of the corpus processing and model training             processes for the requester, where the instantiation may be             customized for a particular company's workflow or processing             needs (e.g., by removing certain information from documents,             using specific formats for labels, etc.); and         -   other forms of account management services.     -   a process or service to generate a trained machine learning         model for a company or business 518, such as         -   a process or service to acquire the corpus of documents             (such as customer generated messages) from the company;         -   a process or service to generate keyphrases from each             document in the corpus of documents;         -   a process or service to generate word or token embeddings             from each document in the corpus of documents;         -   a process or service to perform a clustering operation on             the word or token embeddings;         -   a process or service to assign each document in the corpus             to a duster and enable curation and labeling of each             cluster; and         -   a process or service to train a machine learning model using             the most relevant documents in a cluster and the label             assigned to that cluster;     -   after training of the text classification model for a specific         company, the platform may respond to a customer's service         request or launching of a client device application by a process         or service for accessing an appropriate message classification         model and providing it to the customer's client device 520, such         as         -   a process or service to identify the correct trained model             to provide to the customer;             -   in this case the “correct” model is the one                 corresponding to the company from whom the customer is                 requesting assistance (and may be indicated by the                 application the customer used);         -   a process or service to provide the intent tree data and the             appropriate trained model to the requester's client device,             along with a supporting application (if needed and not             already provided) to enable display and interaction with an             intent tree data structure;     -   a process or service for processing the customer selection,         model output or customer text input 522, such as         -   a process or service that receives an intent selected by a             user or a prediction or classification from the client             application or trained model that represents the “predicted”             or most likely to be correct intent of the requester based             on text entered into a text entry field in the user             interface;         -   a process or service that receives and processes a partial             or full text input from the requester in the situation where             the requester is unable to select an intent from the intent             tree or to determine a best fit to their intent using the             trained model;     -   based on the determined intent (as a result of the customer         selection, operation of the trained model or processing of the         partial or full text provided by a requester by a person or         process), request routing processes or services 524, such as         -   processes or services that function to route the request to             the appropriate handler, such as a department, Bot, task or             workflow, application, URL, or person based on the             customer's selection, the intent determined/predicted by the             model or further processing of the customer's text input             (typically by a person acting as an evaluator);     -   a process or service to provide additional data to the         system/platform for use in further training and/or evaluation of         possible improvements to the trained model, 526, such as         -   a process or service to provide the customer's initial             message (and if applicable, their more detailed text             message) and the determined intent/label to a process for             training and updating the intent tree and trained model; and     -   administrative services 528, such as         -   a process or services to enable the provider of the customer             service request processing and routing services and/or the             platform to administer and configure the processes and             services provided to requesters.             Note that some of the functions or services described with             reference to FIG. 5 (such as services or functions 522             and/or 524) may be performed in whole or in part by the             application downloaded to the customer's device.

The platform or system shown in FIG. 5 may be hosted on a distributed computing system made up of at least one, but likely multiple, “servers.” A server is a physical computer dedicated to providing data storage and an execution environment for one or more software applications or services intended to serve the needs of the users of other computers that are in data communication with the server, for instance via a public network such as the Internet. The server, and the services it provides, may be referred to as the “host” and the remote computers, and the software applications running on the remote computers being served may be referred to as “clients.” Depending on the computing service(s) that a server offers it could be referred to as a database server, data storage server, file server, mail server, print server, web server, etc. A web server is a most often a combination of hardware and the software that helps deliver content, commonly by hosting a website, to client web browsers that access the web server via the Internet.

FIG. 6 is a diagram illustrating elements or components of an example operating environment 600 in which an embodiment of the invention may be implemented. As shown, a variety of clients 602 incorporating and/or incorporated into a variety of computing devices may communicate with a multi-tenant service platform 608 through one or more networks 614. For example, a client may incorporate and/or be incorporated into a client application (e.g., software) implemented at least in part by one or more of the computing devices. Examples of suitable computing devices include personal computers, server computers 604, desktop computers 606, laptop computers 607, notebook computers, tablet computers or personal digital assistants (PDAs) 610, smart phones 612, cell phones, and consumer electronic devices incorporating one or more computing device components, such as one or more electronic processors, microprocessors, central processing units (CPU), or controllers. Examples of suitable networks 614 include networks utilizing wired and/or wireless communication technologies and networks operating in accordance with any suitable networking and/or communication protocol (e.g., the Internet).

The distributed computing service/platform (which may also be referred to as a multi-tenant data processing platform) 608 may include multiple processing tiers, including a user interface tier 616, an application server tier 620, and a data storage tier 624. The user interface tier 616 may maintain multiple user interfaces 617, including graphical user interfaces and/or web-based interfaces. The user interfaces may include a default user interface for the service to provide access to applications and data for a user or “tenant” of the service (depicted as “Service UI” in the figure), as well as one or more user interfaces that have been specialized/customized in accordance with user specific requirements (e.g., represented by “Tenant A UI”, “Tenant Z UI” in the figure, and which may be accessed via one or more APIs).

The default user interface may include user interface components enabling a tenant to administer the tenant's access to and use of the functions and capabilities provided by the service platform. This may include accessing tenant data, launching an instantiation of a specific application, causing the execution of specific data processing operations, etc. Each application server or processing tier 622 shown in the figure may be implemented with a set of computers and/or components including computer servers and processors, and may perform various functions, methods, processes, or operations as determined by the execution of a software application or set of instructions. The data storage tier 624 may include one or more data stores, which may include a Service Data store 625 and one or more Tenant Data stores 626. Data stores may be implemented with any suitable data storage technology, including structured query language (SQL) based relational database management systems (RDBMS).

Service Platform 608 may be multi-tenant and may be operated by an entity in order to provide multiple tenants with a set of business-related or other data processing applications, data storage, and functionality. For example, the applications and functionality may include providing web-based access to the functionality used by a business to provide services to end-users, thereby allowing a user with a browser and an Internet or intranet connection to view, enter, process, or modify certain types of information. Such functions or applications are typically implemented by one or more modules of software code/instructions that are maintained on and executed by one or more servers 622 that are part of the platform's Application Server Tier 620. As noted with regards to FIG. 5, the platform system shown in FIG. 6 may be hosted on a distributed computing system made up of at least one, but typically multiple, “servers.”

As mentioned, rather than build and maintain such a platform or system themselves, a business may utilize systems provided by a third party. A third party may implement a business system/platform as described above in the context of a multi-tenant platform, where individual instantiations of a business' data processing workflow (such as the message/request processing and routing described herein) are provided to users, with each business representing a tenant of the platform. One advantage to such multi-tenant platforms is the ability for each tenant to customize their instantiation of the data processing workflow to that tenant's specific business needs or operational methods. Each tenant may be a business or entity that uses the multi-tenant platform to provide business services and functionality to multiple users.

FIG. 7 is a diagram illustrating additional details of the elements or components of the multi-tenant distributed computing service platform of FIG. 6, in which an embodiment of the invention may be implemented. The software architecture shown in FIG. 7 represents an example of an architecture which may be used to implement an embodiment of the invention. In general, an embodiment of the invention may be implemented using a set of software instructions that are designed to be executed by a suitably programmed processing element (such as a CPU, microprocessor, processor, controller, computing device, etc.). In a complex system such instructions are typically arranged into “modules” with each such module performing a specific task, process, function, or operation. The entire set of modules may be controlled or coordinated in their operation by an operating system (OS) or other form of organizational platform.

As noted, FIG. 7 is a diagram illustrating additional details of the elements or components 700 of a multi-tenant distributed computing service platform, in which an embodiment of the invention may be implemented. The example architecture includes a user interface layer or tier 702 having one or more user interfaces 703. Examples of such user interfaces include graphical user interfaces and application programming interfaces (APIs). Each user interface may include one or more interface elements 704. For example, users may interact with interface elements in order to access functionality and/or data provided by application and/or data storage layers of the example architecture. Examples of graphical user interface elements include buttons, menus, checkboxes, drop-down lists, scrollbars, sliders, spinners, text boxes, icons, labels, progress bars, status bars, toolbars, windows, hyperlinks and dialog boxes. Application programming interfaces may be local or remote and may include interface elements such as parameterized procedure calls, programmatic objects and messaging protocols.

The application layer 710 may include one or more application modules 711, each having one or more sub-modules 712. Each application module 711 or sub-module 712 may correspond to a function, method, process, or operation that is implemented by the module or sub-module (e.g., a function or process related to providing business related data processing and services to a user of the platform). Such function, method, process, or operation may include those used to implement one or more aspects of the inventive system and methods, such as for one or more of the processes or functions described with reference to FIGS. 1, 2A, 2B, 3 and 5:

-   -   a process or service to acquire a corpus of documents (such as         customer generated messages) from a company or organization;         -   in some examples, the corpus may be obtained from a source             of examples of customer service requests that were (or might             be expected to be) received by the company or organization;     -   a process or service to generate keyphrases from each document         in the corpus of documents;     -   a process or service to generate word or token embeddings from         each document in the corpus of documents;     -   a process or service to perform a clustering operation on the         word or token embeddings;     -   a process or service to assign each document in the corpus to a         cluster and enable curation and labeling of each cluster;     -   a process or service to train a machine learning model using the         most relevant documents in a cluster and the label assigned to         that cluster;     -   a process or service to provide the trained model and a data         structure representing an “intent tree” of possible categories         of requests for assistance to the company's customers when they         request assistance, send a message to a customer support         address, or launch a customer service application (or otherwise         indicate a need for assistance);     -   a process or service to provide an application (if it has not         already been provided) to the company's customers to display and         enable customers to “navigate” the intent tree, to select a         desired intent or category of assistance, to confirm a selected         intent, to allow a customer to insert text and have that text         classified by the trained model, and to confirm their acceptance         of the classification produced by the trained model;         -   where the application is configured to generate a display or             user interface including the intent tree and user interface             elements to enable the selection, text input, confirmation,             and other functions;     -   a process or service to allow a customer to insert text, a         phrase, a question, or a sentence (as examples) into a field of         a user interface and have the contents of the field provided to         the server/platform for further evaluation and processing         (typically by a person);     -   a process or service to provide the customer's initial message         (and if applicable, their more detailed text message) and the         determined intent/label to a process for training and updating         the intent tree and trained model; and     -   a process or service to provide a mechanism (typically either         through the application or a service on the platform) to provide         a customer's message or request to the appropriate “handler”,         task, workflow, Bot, URL, person or department of the company         for resolution after determination of the customer's intent or         goal in requesting assistance.

The application modules and/or sub-modules may include any suitable computer-executable code or set of instructions (e.g., as would be executed by a suitably programmed processor, microprocessor, or CPU), such as computer-executable code corresponding to a programming language. For example, programming language source code may be compiled into computer-executable code. Alternatively, or in addition, the programming language may be an interpreted programming language such as a scripting language. Each application server (e.g., as represented by element 622 of FIG. 6) may include each application module. Alternatively, different application servers may include different sets of application modules. Such sets may be disjoint or overlapping.

The data storage layer 720 may include one or more data objects 722 each having one or more data object components 721, such as attributes and/or behaviors. For example, the data objects may correspond to tables of a relational database, and the data object components may correspond to columns or fields of such tables. Alternatively, or in addition, the data objects may correspond to data records having fields and associated services. Alternatively, or in addition, the data objects may correspond to persistent instances of programmatic data objects, such as structures and classes. Each data store in the data storage layer may include each data object. Alternatively, different data stores may include different sets of data objects. Such sets may be disjoint or overlapping.

Note that the example computing environments depicted in FIGS. 5-7 are not intended to be limiting examples. Further environments in which an embodiment of the invention may be implemented in whole or in part include devices (including mobile devices), software applications, systems, apparatuses, networks, SaaS platforms, IaaS (infrastructure-as-a-service) platforms, or other configurable components that may be used by multiple users for data entry, data processing, application execution, or data review.

It should be understood that the present invention as described above can be implemented in the form of control logic using computer software in a modular or integrated manner. Based on the disclosure and teachings provided herein, a person of ordinary skill in the art will know and appreciate other ways and/or methods to implement the present invention using hardware and a combination of hardware and software.

In some embodiments, certain of the methods, models or functions described herein may be embodied in the form of a trained neural network, where the network is implemented by the execution of a set of computer-executable instructions or representation of a data structure. The instructions may be stored in (or on) a non-transitory computer-readable medium and executed by a programmed processor or processing element. A trained neural network, trained machine learning model, or other form of decision or classification process may be used to implement one or more of the methods, functions, processes or operations described herein. Note that a neural network or deep learning model may be characterized in the form of a data structure in which are stored data representing a set of layers containing nodes, and connections between nodes in different layers are created (or formed) that operate on an input to provide a decision or value as an output.

In general terms, a neural network may be viewed as a system of interconnected artificial “neurons” that exchange messages between each other. The connections have numeric weights that are “tuned” during a training process, so that a properly trained network will respond correctly when presented with an image or pattern to recognize (for example). In this characterization, the network consists of multiple layers of feature-detecting “neurons”; each layer has neurons that respond to different combinations of inputs from the previous layers. Training of a network is performed using a “labeled” dataset of inputs in a wide assortment of representative input patterns that are associated with their intended output response. Training uses general-purpose methods to iteratively determine the weights for intermediate and final feature neurons. In terms of a computational model, each neuron calculates the dot product of inputs and weights, adds the bias, and applies a non-linear trigger or activation function (for example, using a sigmoid response function).

Machine learning (ML) is being used more and more to enable the analysis of data and assist in making decisions in multiple industries. In order to benefit from using machine learning, a machine learning algorithm is applied to a set of training data and labels to generate a “model” which represents what the application of the algorithm has “learned” from the training data. Each element (or example, in the form of one or more parameters, variables, characteristics or “features”) of the set of training data is associated with a label or annotation that defines how the element should be classified by the trained model. A machine learning model is a set of layers of connected neurons that operate to make a decision (such as a classification) regarding a sample of input data. When trained (i.e., the weights connecting neurons have converged and become stable or within an acceptable amount of variation), the model will operate on a new element of input data to generate the correct label or classification as an output.

The present disclosure includes the following numbered clauses:

-   Clause 1. A method of providing assistance to a customer,     comprising:

creating a trained text classification model by

-   -   obtaining a set of documents;     -   generating a set of possible keyphrases from each document in         the set of documents;     -   generating a set of word or token embeddings from each document         in the set of documents;     -   performing a clustering operation to generate a set of clusters         from the set of word or token embeddings, wherein each cluster         of the set of clusters contains one or more of the word or token         embeddings in the set of word or token embeddings;     -   assigning each document in the set of documents to one of the         set of generated clusters;     -   assigning a label to each of the generated clusters;     -   forming a set of training data for a text classification model,         wherein the training data comprises a plurality of pairs of a         document in the set of documents and a label for the cluster to         which the document is assigned; and     -   training the text classification model using the set of training         data;

providing the trained text classification model to the customer;

generating a display on a device, the display showing a set of labels with each label corresponding to one of the clusters generated from the word or token embeddings; and

receiving a selection of one of the set of labels by the customer, and in response providing the customer with access to an appropriate process to provide them with assistance.

-   Clause 2. The method of clause 1, wherein the set of documents     comprises a plurality of text messages, -   Clause 3. The method of clause 1, wherein generating the set of     possible keyphrases further comprises constructing a set of n-grams     for each document, wherein each n-gram is considered a possible     keyphrase. -   Clause 4. The method of clause 1, wherein prior to the clustering     operation, each keyphrase is ranked using term     frequency-inverse-document-frequency (tf-idf) scoring and assigning     the label to each of the generated dusters depends at least in part     on the scores associated with the keyphrases in the cluster. -   Clause 5. The method of clause 1, wherein the generated display is a     hierarchy of labels. -   Clause 6. The method of clause 1, wherein if a selection of one of     the set of labels is not received from the customer, then the method     further comprises determining if text entered into a text entry     field by the customer corresponds to an existing label by using the     trained model to classify the entered text. -   Clause 7. The method of clause 1, wherein the text classification     model is developed using the Naive Bayes algorithm. -   Clause 8. The method of clause 1, further comprising pre-processing     each document in the set of documents, wherein the pre-processing     includes one or more of removing html, URLs, numbers, and emojis,     breaking the document into sentences, breaking each sentences into     words, removing single characters, and removing stop words. -   Clause 9. The method of clause 6, wherein if the text entered by the     customer does not correspond to an existing label that the customer     confirms, then the method further comprises providing the entered     text or another set of text provided by the customer to a curator,     and using the entered text or other set of text and a label provided     by the curator as training data for the text classification model. -   Clause 10. The method of clause 6, wherein providing the customer     with access to an appropriate process to provide them with     assistance further comprises providing a message from the user to a     person or a bot, launching an application, or directing the user to     a webpage to provide the user with assistance, wherein the person,     bot, application, or webpage are associated with the label selected     by the customer, a classification generated by the trained model, or     a label provided by a curator. -   Clause 11. A system for assisting a user to obtain a service,     comprising: -   an application installed on a computing device separate from a     remote server and configured to receive a trained text     classification model from the remote server and to generate a user     interface for the user to interact with the trained model; and -   the remote server, wherein the remote server is configured to

create the trained text classification model by

-   -   obtaining a set of documents;         -   generating a set of possible keyphrases from each document             in the set of documents;         -   generating a set of word or token embeddings from each             document in the set of documents;         -   performing a clustering operation to generate a set of             clusters from the set of word or token embeddings, wherein             each cluster of the set of clusters contains one or more of             the word or token embeddings in the set of word or token             embeddings;         -   assigning each document in the set of documents to one of             the set of generated clusters;     -   assigning a label to each of the generated clusters;         -   forming a set of training data for a text classification             model, wherein the training data comprises a plurality of             pairs of a document in the set of documents and a label for             the cluster to which the document is assigned; and     -   training the text classification model using the set of training         data;

provide the trained text classification model to the customer;

-   wherein the application is further configured to generate a display     on the device, the display showing a set of labels with each label     corresponding to one of the dusters generated from the word or token     embeddings and the remote server is further configured to receive a     selection of one of the set of labels by the user, and in response     provide the user with access to an appropriate process to provide     them with the service. -   Clause 12. The system of clause 11, wherein the set of documents     comprises a plurality of text messages. -   Clause 13. The system of clause 11, wherein generating the set of     possible keyphrases further comprises constructing a set of n-grams     for each document, wherein each n-gram is considered a possible     keyphrase. -   Clause 14. The system of clause 11, wherein prior to the clustering     operation, each keyphrase is ranked using term     frequency-inverse-document-frequency (tf-idf) scoring and assigning     the label to each of the generated clusters depends at least in part     on the scores associated with the keyphrases in the duster. -   Clause 15. The system of clause 11, wherein the generated display is     a hierarchy of labels. -   Clause 16. The system of clause 11, wherein if a selection of one of     the set of labels is not received from the user, then the     application is configured to determine if text entered into a text     entry field by the user corresponds to an existing label by using     the trained model to classify the entered text. -   Clause 17. The system of clause 16, wherein the remote server is     configured to provide the customer with access to an appropriate     process to provide them with the service by providing a message from     the user to a person or a bot, launching an application, or     directing the user to a webpage to provide the user with assistance,     wherein the person, hot, application, or webpage are associated with     the label selected by the customer, a classification generated by     the trained model, or a label provided by a curator. -   Clause 18. One or more non-transitory computer-readable media     comprising a set of computer-executable instructions that when     executed by one or more programmed electronic processors, cause the     processors to provide assistance to a customer by:

creating a trained text classification model by

-   -   obtaining a set of documents;     -   generating a set of possible keyphrases from each document in         the set of documents;     -   generating a set of word or token embeddings from each document         in the set of documents;     -   performing a clustering operation to generate a set of clusters         from the set of word or token embeddings, wherein each cluster         of the set of clusters contains one or more of the word or token         embeddings in the set of word or token embeddings;     -   assigning each document in the set of documents to one of the         set of generated clusters;     -   assigning a label to each of the generated clusters;     -   forming a set of training data for a text classification model,         wherein the training data comprises a plurality of pairs of a         document in the set of documents and a label for the cluster to         which the document is assigned; and     -   training the text classification model using the set of training         data;

providing the trained text classification model to the customer;

generating a display on a device, the display showing a set of labels with each label corresponding to one of the clusters generated from the word or token embeddings; and

receiving a selection of one of the set of labels by the customer, and in response providing the customer with access to an appropriate process to provide them with assistance.

-   Clause 19. The one or more non-transitory computer-readable media of     clause 18, wherein if a selection of one of the set of labels is not     received from the customer, then the one or more processors are     configured to determine if text entered into a text entry field by     the customer corresponds to an existing label by using the trained     model to classify the entered text. -   Clause 20. The one or more non-transitory computer-readable media of     clause 18, wherein the one or more processors are configured to     provide the customer with access to an appropriate process to     provide them with assistance by providing a message from the user to     a person or a hot, launching an application, or directing the user     to a webpage to provide the user with assistance, wherein the     person, hot, application, or webpage are associated with the label     selected by the customer, a classification generated by the trained     model, or a label provided by a curator. -   Clause 21. A method of providing assistance to a customer,     comprising:

receiving a message from the customer requesting assistance;

-   in response to receiving the message, providing a trained text     classification model to the customer, the trained model configured     to classify text input to the model, wherein the classification     represents a category corresponding to the message; -   generating a display on a device of a set of categories, with each     category corresponding to a possible type of assistance;

receiving a selection of one of the set of displayed categories by the customer, and in response providing the customer with access to an appropriate process to provide them with assistance; and

if a selection of one of the set of categories is not received from the user, then the method further comprises determining if text entered into a text entry field by the customer corresponds to a category by using the trained model to classify the entered text.

-   Clause 22. The method of clause 21, wherein providing the customer     with access to an appropriate process to provide them with     assistance further comprises routing a message generated by the     customer to a process, a bot, an application or a person associated     with the category selected by the customer, a classification     generated by the trained model, or a category provided by a curator. -   Clause 23. The method of clause 21, further comprising providing the     customer with an application configured to generate the display on     the device. -   Clause 24. The method of clause 21, further comprising providing the     customer with a set of data that is used to generate the display. -   Clause 25. The method of clause 21, wherein the display of the set     of categories is in the form of a list or a hierarchical display.

Any of the software components, processes or functions described in this application may be implemented as software code to be executed by a processor using any suitable computer language such as Python, Java, JavaScript, C++ or Perl using conventional or object-oriented techniques. The software code may be stored as a series of instructions, or commands in (or on) a non-transitory computer-readable medium, such as a random-access memory (RAM), a read only memory (ROM), a magnetic medium such as a hard-drive or a floppy disk, or an optical medium such as a CD-ROM. In this context, a non-transitory computer-readable medium is almost any medium suitable for the storage of data or an instruction set aside from a transitory waveform. Any such computer readable medium may reside on or within a single computational apparatus and may be present on or within different computational apparatuses within a system or network.

According to one example implementation, the term processing element or processor, as used herein, may be a central processing unit (CPU), or conceptualized as a CPU (such as a virtual machine). In this example implementation, the CPU or a device in which the CPU is incorporated may be coupled, connected, and/or in communication with one or more peripheral devices, such as display. In another example implementation, the processing element or processor may be incorporated into a mobile computing device, such as a smartphone or tablet computer.

The non-transitory computer-readable storage medium referred to herein may include a number of physical drive units, such as a redundant array of independent disks (RAID), a floppy disk drive, a flash memory, a USB flash drive, an external hard disk drive, thumb drive, pen drive, key drive, a High-Density Digital Versatile Disc (HD-DV D) optical disc drive, an internal hard disk drive, a Blu-Ray optical disc drive, or a Holographic Digital Data Storage (HDDS) optical disc drive, synchronous dynamic random access memory (SDRAM), or similar devices or other forms of memories based on similar technologies. Such computer-readable storage media allow the processing element or processor to access computer-executable process steps, application programs and the like, stored on removable and non-removable memory media, to off-load data from a device or to upload data to a device. As mentioned, with regards to the embodiments described herein, a non-transitory computer-readable medium may include almost any structure, technology or method apart from a transitory waveform or similar medium.

Certain implementations of the disclosed technology are described herein with reference to block diagrams of systems, and/or to flowcharts or flow diagrams of functions, operations, processes, or methods. It will be understood that one or more blocks of the block diagrams, or one or more stages or steps of the flowcharts or flow diagrams, and combinations of blocks in the block diagrams and stages or steps of the flowcharts or flow diagrams, respectively, can be implemented by computer-executable program instructions. Note that in some embodiments, one or more of the blocks, or stages or steps may not necessarily need to be performed in the order presented or may not necessarily need to be performed at all.

These computer-executable program instructions may be loaded onto a general-purpose computer, a special purpose computer, a processor, or other programmable data processing apparatus to produce a specific example of a machine, such that the instructions that are executed by the computer, processor, or other programmable data processing apparatus create means for implementing one or more of the functions, operations, processes, or methods described herein. These computer program instructions may also be stored in a computer-readable memory that can direct a computer or other programmable data processing apparatus to function in a specific manner, such that the instructions stored in the computer-readable memory produce an article of manufacture including instruction means that implement one or more of the functions, operations, processes, or methods described herein.

While certain implementations of the disclosed technology have been described in connection with what is presently considered to be the most practical and various implementations, it is to be understood that the disclosed technology is not to be limited to the disclosed implementations. Instead, the disclosed implementations are intended to cover various modifications and equivalent arrangements included within the scope of the appended claims. Although specific terms are employed herein, they are used in a generic and descriptive sense only and not for purposes of limitation.

This written description uses examples to disclose certain implementations of the disclosed technology, and also to enable any person skilled in the art to practice certain implementations of the disclosed technology, including making and using any devices or systems and performing any incorporated methods. The patentable scope of certain implementations of the disclosed technology is defined in the claims, and may include other examples that occur to those skilled in the art. Such other examples are intended to be within the scope of the claims if they have structural and/or functional elements that do not differ from the literal language of the claims, or if they include structural and/or functional elements with insubstantial differences from the literal language of the claims.

All references, including publications, patent applications, and patents, cited herein are hereby incorporated by reference to the same extent as if each reference were individually and specifically indicated to be incorporated by reference and/or were set forth in its entirety herein.

The use of the terms “a” and “an” and “the” and similar referents in the specification and in the following claims are to be construed to cover both the singular and the plural, unless otherwise indicated herein or clearly contradicted by context. The terms “having,” “including,” “containing” and similar referents in the specification and in the following claims are to be construed as open-ended terms (e.g., meaning “including, but not limited to,”) unless otherwise noted. Recitation of ranges of values herein are merely indented to serve as a shorthand method of referring individually to each separate value inclusively falling within the range, unless otherwise indicated herein, and each separate value is incorporated into the specification as if it were individually recited herein. All methods described herein can be performed in any suitable order unless otherwise indicated herein or clearly contradicted by context. The use of any and all examples, or exemplary language (e.g., “such as”) provided herein, is intended merely to better illuminate embodiments of the invention and does not pose a limitation to the scope of the invention unless otherwise claimed. No language in the specification should be construed as indicating any non-claimed element as essential to each embodiment of the present invention.

Different arrangements of the components depicted in the drawings or described above, as well as components and steps not shown or described are possible. Similarly, some features and sub-combinations are useful and may be employed without reference to other features and sub-combinations. Embodiments of the invention have been described for illustrative and not restrictive purposes, and alternative embodiments will become apparent to readers of this patent. Accordingly, the present invention is not limited to the embodiments described above or depicted in the drawings, and various embodiments and modifications can be made without departing from the scope of the claims below. 

That which is claimed is:
 1. A method of providing assistance to a customer, comprising: creating a trained text classification model by obtaining a set of documents; generating a set of possible keyphrases from each document in the set of documents; generating a set of word or token embeddings from each document in the set of documents; performing a clustering operation to generate a set of clusters from the set of word or token embeddings, wherein each cluster of the set of clusters contains one or more of the word or token embeddings in the set of word or token embeddings; assigning each document in the set of documents to one of the set of generated clusters; assigning a label to each of the generated clusters; forming a set of training data for a text classification model, wherein the training data comprises a plurality of pairs of a document in the set of documents and a label for the cluster to which the document is assigned; and training the text classification model using the set of training data; providing the trained text classification model to the customer; generating a display on a device, the display showing a set of labels with each label corresponding to one of the clusters generated from the word or token embeddings; and receiving a selection of one of the set of labels by the customer, and in response providing the customer with access to an appropriate process to provide them with assistance.
 2. The method of claim 1, wherein the set of documents comprises a plurality of text messages.
 3. The method of claim 1, wherein generating the set of possible keyphrases further comprises constructing a set of n-grams for each document, wherein each n-gram is considered a possible keyphrase.
 4. The method of claim 1, wherein prior to the clustering operation, each keyphrase is ranked using term frequency-inverse-document-frequency (tf-idf) scoring and assigning the label to each of the generated dusters depends at least in part on the scores associated with the keyphrases in the cluster.
 5. The method of claim 1, wherein the generated display is a hierarchy of labels.
 6. The method of claim 1, wherein if a selection of one of the set of labels is not received from the customer, then the method further comprises determining if text entered into a text entry field by the customer corresponds to an existing label by using the trained model to classify the entered text.
 7. The method of claim 1, wherein the text classification model is developed using the Naive Bayes algorithm.
 8. The method of claim 1, further comprising pre-processing each document in the set of documents, wherein the pre-processing includes one or more of removing html, URLs, numbers, and emojis, breaking the document into sentences, breaking each sentences into words, removing single characters, and removing stop words.
 9. The method of claim 6, wherein if the text entered by the customer does not correspond to an existing label that the customer confirms, then the method further comprises providing the entered text or another set of text provided by the customer to a curator, and using the entered text or other set of text and a label provided by the curator as training data for the text classification model.
 10. The method of claim 6, wherein providing the customer with access to an appropriate process to provide therm with assistance further comprises providing a message from the user to a person or a bot, launching an application, or directing the user to a webpage to provide the user with assistance, wherein the person, bot, application, or webpage are associated with the label selected by the customer, a classification generated by the trained model, or a label provided by a curator.
 11. A system for assisting a user to obtain a service, comprising: an application installed on a computing device separate from a remote server and configured to receive a trained text classification model from the remote server and to generate a user interface for the user to interact with the trained model; and the remote server, wherein the remote server is configured to create the trained text classification model by obtaining a set of documents; generating a set of possible keyphrases from each document in the set of documents; generating a set of word or token embeddings from each document in the set of documents; performing a clustering operation to generate a set of clusters from the set of word or token embeddings, wherein each cluster of the set of clusters contains one or more of the word or token embeddings in the set of word or token embeddings; assigning each document in the set of documents to one of the set of generated clusters; assigning a label to each of the generated clusters; forming a set of training data for a text classification model, wherein the training data comprises a plurality of pairs of a document in the set of documents and a label for the cluster to which the document is assigned; and training the text classification model using the set of training data; provide the trained text classification model to the customer; wherein the application is further configured to generate a display on the device, the display showing a set of labels with each label corresponding to one of the clusters generated from the word or token embeddings and the remote server is further configured to receive a selection of one of the set of labels by the user, and in response provide the user with access to an appropriate process to provide them with the service.
 12. The system of claim 11, wherein the set of documents comprises a plurality of text messages.
 13. The system of claim 11, wherein generating the set of possible keyphrases further comprises constructing a set of n-grams for each document, wherein each n-gram is considered a possible keyphrase.
 14. The system of claim 11, wherein prior to the clustering operation, each keyphrase is ranked using term frequency-inverse-document-frequency (tf-idf) scoring and assigning the label to each of the generated clusters depends at least in part on the scores associated with the keyphrases in the cluster.
 15. The system of claim 11, wherein the generated display is a hierarchy of labels.
 16. The system of claim 11, wherein if a selection of one of the set of labels is not received from the user, then the application is configured to determine if text entered into a text entry field by the user corresponds to an existing label by using the trained model to classify the entered text.
 17. The system of claim 16, wherein the remote server is configured to provide the customer with access to an appropriate process to provide them with the service by providing a message from the user to a person or a bot, launching an application, or directing the user to a webpage to provide the user with assistance, wherein the person, bot, application, or webpage are associated with the label selected by the customer, a classification generated by the trained model, or a label provided by a curator.
 18. One or more non-transitory computer-readable media comprising a set of computer-executable instructions that when executed by one or more programmed electronic processors, cause the processors to provide assistance to a customer by: creating a trained text classification model by obtaining a set of documents; generating a set of possible keyphrases from each document in the set of documents; generating a set of word or token embeddings from each document in the set of documents; performing a clustering operation to generate a set of dusters from the set of word or token embeddings, wherein each duster of the set of dusters contains one or more of the word or token embeddings in the set of word or token embeddings; assigning each document in the set of documents to one of the set of generated dusters; assigning a label to each of the generated clusters; forming a set of training data for a text classification model, wherein the training data comprises a plurality of pairs of a document in the set of documents and a label for the cluster to which the document is assigned; and training the text classification model using the set of training data; providing the trained text classification model to the customer; generating a display on a device, the display showing a set of labels with each label corresponding to one of the clusters generated from the word or token embeddings; and receiving a selection of one of the set of labels by the customer, and in response providing the customer with access to an appropriate process to provide them with assistance.
 19. The one or more non-transitory computer-readable media of claim 18, wherein if a selection of one of the set of labels is not received from the customer, then the one or more processors are configured to determine if text entered into a text entry field by the customer corresponds to an existing label by using the trained model to classify the entered text.
 20. The one or more non-transitory computer-readable media of claim 18, wherein the one or more processors are configured to provide the customer with access to an appropriate process to provide them with assistance by providing a message from the user to a person or a bot, launching an application, or directing the user to a webpage to provide the user with assistance, wherein the person, bot, application, or webpage are associated with the label selected by the customer, a classification generated by the trained model, or a label provided by a curator. 